Li Yan, Liu Shelley H, Niu Li, Liu Bian
Center for Health Innovation, The New York Academy of Medicine, New York, New York (Dr Li); Department of Population Health Science and Policy, Icahn School of Medicine at Mount Sinai, New York, New York (Drs Li, S. H. Liu, and B. Liu); and Department of Psychology, Fordham University, Bronx, New York (Ms Niu).
J Public Health Manag Pract. 2019 Jan/Feb;25(1):E25-E28. doi: 10.1097/PHH.0000000000000817.
This study identifies and ranks predictors of cardiovascular health at the neighborhood level in the United States. We merged the 500 Cities Data and the 2011-2015 American Community Survey to create a new data set that includes sociodemographic characteristics, health behaviors, prevention measures, and cardiovascular health outcomes for more than 28 000 census tracts in the United States. We used random forest to rank predictors of coronary heart disease and stroke. For coronary heart disease, the top 5 ordered predictors were the prevalence of taking medicine for high blood pressure control, binge drinking, being aged 65 years or older, lack of leisure-time physical activity, and obesity. For stroke, the top 5 ordered predictors were the prevalence of obesity, lack of leisure-time physical activity, taking medicine for high blood pressure, being black, and binge drinking. Machine learning approaches have the potential to inform policy makers on important resource allocation decisions at the neighborhood level.
本研究在美国邻里层面识别并对心血管健康的预测因素进行排序。我们将“500个城市数据”与《2011 - 2015年美国社区调查》合并,创建了一个新数据集,其中包括美国超过28000个普查区的社会人口特征、健康行为、预防措施以及心血管健康结果。我们使用随机森林对冠心病和中风的预测因素进行排序。对于冠心病,排名前5的预测因素依次是控制高血压药物的服用率、酗酒、65岁及以上、缺乏休闲时间身体活动以及肥胖。对于中风,排名前5的预测因素依次是肥胖率、缺乏休闲时间身体活动、服用高血压药物、黑人以及酗酒。机器学习方法有潜力为政策制定者提供邻里层面重要资源分配决策的信息。